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A novel application of sample entropy to the electrocardiogram of atrial fibrillation

机译:样本熵在心房颤动心电图中的新应用

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Nowadays, several non-linear regularity estimators have been successfully applied to invasive atrial electrograms in order to characterize the atrial electrical activity organization during atrial fibrillation (AF). This arrhythmia is the most common encountered in clinical practice, accounting for approximately one-third of all the hospitalizations for cardiac rhythm disturbances. However, from a clinical point of view, it would be more desired to evaluate atrial activity (AA) organization from surface electrocardiographic (ECG) recordings, since they can be obtained easily and cheaply and the risks associated with invasive recordings could be avoided. In this work, Sample Entropy (SampEn) is proposed to assess the organization degree of the AA obtained from surface ECGs. To this respect, a reliable and non-invasive organization estimator would allow the prediction of spontaneous AF termination, since invasive studies have shown more organized electrical activity signals during the preceding instants of AF termination. The proposed method computed SampEn over the AA obtained from TQ segments, free of QRST complexes, and was validated with a database containing a training set of 20 AF recordings, with known termination properties, and a test set of 30 recordings. A simulation study showed that patients with heart rates of 130 bpm and above must be handled with care, because TQ intervals could be considerably reduced (<50 ms). As an overall result, spontaneous AF termination in 90% of the learning and test recordings was correctly predicted through this novel approach. As a conclusion, this work introduces the application of a non-linear regularity index able to assess significative differences in AA organization from surface ECG recordings during AF.
机译:如今,几种非线性正则估计量已成功应用于有创心房电描记图,以表征心房颤动(AF)期间的心房电活动组织。这种心律失常是临床实践中最常见的情况,约占所有心律失常住院治疗的三分之一。但是,从临床的角度来看,更希望从表面心电图(ECG)记录评估心房活动(AA)的组织,因为可以轻松,廉价地获得它们,并且可以避免与侵入性记录相关的风险。在这项工作中,提出了样本熵(SampEn)来评估从表面ECG获得的AA的组织度。在这方面,可靠的,非侵入性的组织估计器将允许自发性AF终止的预测,因为侵入性研究显示,在AF终止的先前时刻中,有组织的电活动信号更为明显。所提出的方法在从TQ段获得的AA上计算了SampEn,没有QRST络合物,并通过一个包含20个AF记录的训练集,已知终止特性的测试集和30个记录的测试集的数据库进行了验证。一项模拟研究表明,必须谨慎处理心率为130 bpm及以上的患者,因为TQ间隔可以大大缩短(<50 ms)。总的来说,通过这种新颖的方法可以正确预测90%的学习和测试记录中的自发性AF终止。总之,这项工作介绍了一种非线性规律性指数的应用,该指数能够评估AF期间从表面ECG记录得出的AA组织中的显着差异。

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